Climate Change-Greenhouse Gas Emissions Analysis and Forecast in Romania
Abstract
:1. Introduction
2. Materials and Methods
- Median level for SCr intervals
- n—number of terms;
- yt—the series terms;
- SCr moments with equal intervals between moments—the median level is calculated as a chronological simple average, a particular case of the chronological weighted average where h1 = h2 = … = hn − 1 = hn = h and h represents the interval length (in time units).
- -
- hi represents the length of the intervals between moments ti and ti+1, i = 1, …, n − 1, expressed in time units.
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- Ai represents the simple moving chronological average (for example: A1 = ((y1 + y2) × h)/2).
- Absolute average change (absolute average gain)
- yn—the last term of the SCr;
- y1—the first term of the SCr;
- n—number of terms.
- Dynamic average parameter (increase or decrease)
- Dynamic rhythm (relative average change or relative median gain or median increase/decrease ratio)
3. Results and Discussion
3.1. Brief Overview of GHG Emissions in the European Union
3.2. GHG Emissions Analysis and Forecasting in Romania
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- Conformity verification, which is done under the international standard ISO 14065. This gives credit for a series of local, regional, and global emissions schemes. The companies that are developing in order to provide this kind of service usually have experience in EU ETS.
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- GHG emissions inventory and product verification against internationally accepted standards.
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- Carbon footprint—the first step for any business, which means making a verifiable carbon footprint for the organization or product and identifying opportunities to reduce costs by developing low-carbon business strategies and a roadmap for reducing GHG emissions.
3.3. GHG Emissions Statistical Analysis in Romania
3.3.1. Chronological Series Analysis
3.3.2. GHG Emissions Analytical Method Analysis
- -
- We select the graphic representation of the adjusted chronological series that best fits the real values;
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- We select the chronological series trend function for which the sum of the adjusted values is closest to the real values;
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- We select the adjusted function for which the sum of the squares of the differences between the adjusted and real values is minimum;
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- We select the function that has the minimum mean square deviation.
The Adjusted Method | |
Linear function method | 1,060,578,815.71 |
Exponential function method | 7,231,706,537.04 |
3.4. Study Limitations
4. Conclusions
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- Ensure transparency in the emissions quantity for each stakeholder, disregarding the sector;
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- Include better rights and obligations for stakeholders;
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- Provide the tools/means to change the current processes to sustainable, zero emissions ones;
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- Offer state grants for companies adapting to green energy and zero emissions;
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- Implement proper legislation for selecting, managing, and monitoring waste, using green energy for recycling;
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- Maintain a decrease of at least 1.4% in GHG emissions, as shown in our analysis;
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- Maintain a descending trend in the values GHG emissions generated and gathered, which are then reported to the EU;
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- Use the proper statistical methods to analyze the trends in GHGs emissions (from our research, linear trend analysis is one option);
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- Implement, on a national scale, carbon recovery machines or high-carbon-using trees in every part of the country.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
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Years | yt | t | t2 | T*yt | yt | (yt | |
---|---|---|---|---|---|---|---|
2000 | 117,874.98 | −9 | 81 | −1,060,874.81 | 132,339.57 | −14,464.59 | 209,224,480.20 |
2001 | 123,818.21 | −8 | 64 | −990,545.67 | 129,940.38 | −6122.18 | 37,481,036.11 |
2002 | 124,891.01 | −7 | 49 | −874,237.07 | 127,541.20 | −2650.19 | 7,023,481.72 |
2003 | 129,051.47 | −6 | 36 | −774,308.82 | 125,142.01 | 3909.46 | 15,283,899.33 |
2004 | 128,491.31 | −5 | 25 | −642,456.55 | 122,742.82 | 5748.49 | 33,045,155.10 |
2005 | 125,006.10 | −4 | 16 | −500,024.41 | 120,343.63 | 4662.47 | 21,738,667.06 |
2006 | 127,334.60 | −3 | 9 | −382,003.79 | 117,944.44 | 9390.16 | 88,175,056.12 |
2007 | 131,532.46 | −2 | 4 | −263,064.92 | 115,545.25 | 15,987.21 | 255,590,918.54 |
2008 | 126,179.68 | −1 | 1 | −126,179.68 | 113,146.06 | 13,033.62 | 169,875,172.92 |
2009 | 105,847.91 | 0 | 0 | 0.00 | 110,746.87 | −4898.96 | 23,999,799.10 |
2010 | 99,170.01 | 1 | 1 | 99,170.01 | 108,347.68 | −9177.67 | 84,229,655.73 |
2011 | 104,377.84 | 2 | 4 | 208,755.68 | 105,948.50 | −1570.66 | 2,466,960.03 |
2012 | 99,615.38 | 3 | 9 | 298,846.15 | 103,549.31 | −3933.92 | 15,475,752.92 |
2013 | 94,638.20 | 4 | 16 | 378,552.80 | 101,150.12 | −6511.92 | 42,405,083.14 |
2014 | 93,878.21 | 5 | 25 | 469,391.05 | 98,750.93 | −4872.72 | 23,743,397.79 |
2015 | 94,448.55 | 6 | 36 | 566,691.30 | 96,351.74 | −1903.19 | 3,622,135.83 |
2016 | 91,182.74 | 7 | 49 | 638,279.18 | 93,952.55 | −2769.81 | 7,671,859.43 |
2017 | 95,195.44 | 8 | 64 | 761,563.52 | 91,553.36 | 3642.08 | 13,264,722.16 |
2018 | 91,656.49 | 9 | 81 | 824,908.41 | 89,154.17 | 2502.32 | 6,261,582.46 |
TOTAL | 2,104,190.60 | 0.00 | 570 | −1,367,537.61 | 2,104,190.60 | 0.00 | 1,060,578,815.71 |
Years | yt | t | t2 | T*yt | yt | (yt | |
---|---|---|---|---|---|---|---|
2000 | 117,874.98 | −9 | 81 | −1,060,874.81 | 132,339.57 | −14,464.59 | 209,224,480.20 |
2001 | 123,818.21 | −8 | 64 | −990,545.67 | 129,940.38 | −6122.18 | 37,481,036.11 |
2002 | 124,891.01 | −7 | 49 | −874,237.07 | 127,541.20 | −2650.19 | 7,023,481.72 |
2003 | 129,051.47 | −6 | 36 | −774,308.82 | 125,142.01 | 3909.46 | 15,283,899.33 |
2004 | 128,491.31 | −5 | 25 | −642,456.55 | 122,742.82 | 5748.49 | 33,045,155.10 |
2005 | 125,006.10 | −4 | 16 | −500,024.41 | 120,343.63 | 4662.47 | 21,738,667.06 |
2006 | 127,334.60 | −3 | 9 | −382,003.79 | 117,944.44 | 9390.16 | 88,175,056.12 |
2007 | 131,532.46 | −2 | 4 | −263,064.92 | 115,545.25 | 15,987.21 | 255,590,918.54 |
2008 | 126,179.68 | −1 | 1 | −126,179.68 | 113,146.06 | 13,033.62 | 169,875,172.92 |
2009 | 105,847.91 | 0 | 0 | 0.00 | 110,746.87 | −4898.96 | 23,999,799.10 |
2010 | 99,170.01 | 1 | 1 | 99,170.01 | 108,347.68 | −9177.67 | 84,229,655.73 |
2011 | 104,377.84 | 2 | 4 | 208,755.68 | 105,948.50 | −1570.66 | 2,466,960.03 |
2012 | 99,615.38 | 3 | 9 | 298,846.15 | 103,549.31 | −3933.92 | 15,475,752.92 |
2013 | 94,638.20 | 4 | 16 | 378,552.80 | 101,150.12 | −6511.92 | 42,405,083.14 |
2014 | 93,878.21 | 5 | 25 | 469,391.05 | 98,750.93 | −4872.72 | 23,743,397.79 |
2015 | 94,448.55 | 6 | 36 | 566,691.30 | 96,351.74 | −1903.19 | 3,622,135.83 |
2016 | 91,182.74 | 7 | 49 | 638,279.18 | 93,952.55 | −2769.81 | 7,671,859.43 |
2017 | 95,195.44 | 8 | 64 | 761,563.52 | 91,553.36 | 3642.08 | 13,264,722.16 |
2018 | 91,656.49 | 9 | 81 | 824,908.41 | 89,154.17 | 2502.32 | 6,261,582.46 |
TOTAL | 2,104,190.60 | 0.00 | 570 | −1,367,537.61 | 2,104,190.60 | 0.00 | 1,060,578,815.71 |
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Moiceanu, G.; Dinca, M.N. Climate Change-Greenhouse Gas Emissions Analysis and Forecast in Romania. Sustainability 2021, 13, 12186. https://doi.org/10.3390/su132112186
Moiceanu G, Dinca MN. Climate Change-Greenhouse Gas Emissions Analysis and Forecast in Romania. Sustainability. 2021; 13(21):12186. https://doi.org/10.3390/su132112186
Chicago/Turabian StyleMoiceanu, Georgiana, and Mirela Nicoleta Dinca. 2021. "Climate Change-Greenhouse Gas Emissions Analysis and Forecast in Romania" Sustainability 13, no. 21: 12186. https://doi.org/10.3390/su132112186
APA StyleMoiceanu, G., & Dinca, M. N. (2021). Climate Change-Greenhouse Gas Emissions Analysis and Forecast in Romania. Sustainability, 13(21), 12186. https://doi.org/10.3390/su132112186